We propose a novel machine learning-based method for analysing multi-night actigraphy signals to objectively classify and differentiate nocturnal awakenings in individuals with chronic insomnia (CI) and their cohabiting healthy partners. We analysed nocturnal actigraphy signals from 40 cohabiting couples with one partner seeking treatment for insomnia. We extracted 12 time-domain dynamic and nonlinear features from the actigraphy signals to classify nocturnal awakenings in healthy individuals and those with CI. These features were then used to train two machine learning classifiers, random forest (RF) and support vector machine (SVM). An optimization algorithm that incorporated the predicted quality of each night for each individual was use...
Sleep disorders are early markers of various serious diseases that can be treated moreeffectively wh...
Background: As societies become more complex, larger populations suffer from insomnia In 2014, the U...
This study presents a thorough analysis of sleep/wake detection algorithms for efficient on-device s...
We propose a novel machine learning-based method for analysing multi-night actigraphy signals to obj...
Acute and chronic insomnia have different causes and may require different treatments. They are inve...
In this paper we propose a new machine learning model for classification of nocturnal awakenings in ...
This paper presents an actigraphy-based approach for sleep/wake detection for insomniacs. Due to its...
The files contain seven nights of continuous actigraphy measurements of 40 subjects with chronic ins...
In recent years there has been an expansion in the availability of technologies to monitor sleep, ho...
Objective: To quantify and differentiate control and insomnia sleep onset patterns through biomedica...
The present thesis discusses advanced polysomnogram signal processing approaches to perform computer...
Accurately measuring sleep and its quality with polysomnography (PSG) is an expensive task. Actigrap...
Sleep behavior is a key factor in maintaining good physiological and psychological health. A well-kn...
This work aims to investigate new indexes quantitatively differentiate sleep insomnia patients from ...
© Sleep Research Society 2020. Published by Oxford University Press on behalf of the Sleep Research ...
Sleep disorders are early markers of various serious diseases that can be treated moreeffectively wh...
Background: As societies become more complex, larger populations suffer from insomnia In 2014, the U...
This study presents a thorough analysis of sleep/wake detection algorithms for efficient on-device s...
We propose a novel machine learning-based method for analysing multi-night actigraphy signals to obj...
Acute and chronic insomnia have different causes and may require different treatments. They are inve...
In this paper we propose a new machine learning model for classification of nocturnal awakenings in ...
This paper presents an actigraphy-based approach for sleep/wake detection for insomniacs. Due to its...
The files contain seven nights of continuous actigraphy measurements of 40 subjects with chronic ins...
In recent years there has been an expansion in the availability of technologies to monitor sleep, ho...
Objective: To quantify and differentiate control and insomnia sleep onset patterns through biomedica...
The present thesis discusses advanced polysomnogram signal processing approaches to perform computer...
Accurately measuring sleep and its quality with polysomnography (PSG) is an expensive task. Actigrap...
Sleep behavior is a key factor in maintaining good physiological and psychological health. A well-kn...
This work aims to investigate new indexes quantitatively differentiate sleep insomnia patients from ...
© Sleep Research Society 2020. Published by Oxford University Press on behalf of the Sleep Research ...
Sleep disorders are early markers of various serious diseases that can be treated moreeffectively wh...
Background: As societies become more complex, larger populations suffer from insomnia In 2014, the U...
This study presents a thorough analysis of sleep/wake detection algorithms for efficient on-device s...